Title :
Discovering causal change relationships between processes in complex systems
Author :
Mohammad, Yasser ; Nishida, Toyoaki
Abstract :
Complex systems involve the interaction between many processes that may or may not have causal relations to each other. In such systems, discovering causal relations can provide significant insights into the internals of the system and facilitate fault discovery and recovery procedures. In this paper, we provide a novel causality detection algorithm based on robust singular spectrum transform that combines features of autoregressive modeling and perturbation analysis. The proposed approach was evaluated using both synthetic and real data and was shown to provide superior performance to the standard linear Granger-causality test. It also provides a natural way to detect common causes that may give false positives in other causality tests.
Keywords :
causality; fault diagnosis; large-scale systems; linear systems; perturbation techniques; robots; statistical testing; autoregressive modeling feature; causal change relationships discovery; causality detection algorithm; causality test; common causes detection; complex system; fault discovery; perturbation analysis; real data; robust singular spectrum transform; standard linear Granger-causality test; synthetic data; Change detection algorithms; Delay; Detectors; Robots; Silicon; Time series analysis; Vectors;
Conference_Titel :
System Integration (SII), 2011 IEEE/SICE International Symposium on
Conference_Location :
Kyoto
Print_ISBN :
978-1-4577-1523-5
DOI :
10.1109/SII.2011.6147411